In recent decades, artificial neural networks (ANNs) have been used for the prediction of concentration of air pollutants in urban areas. Beside meteorological variables, periodic parameters, such as hour of the day or month of the year, have been frequently used to improve the performance of ANN models by representing variations of emission sources. In this paper, different forms of periodic parameters, i.e. smoothed cosines based approximation and normalized historical mean values, were combined with meteorological variables in order to analyze the sensitivity of the ANN model to them. Ward neural network and general regression neural network were used and compared for the prediction of daily average concentrations of SO2 and NOx in Belgr...
Artificial neural networks are functional alternative techniques in modelling the intricate vehicula...
In this paper, the results obtained by inter-comparing several statistical techniques for modelling ...
Procedures based on artificial neural network (ANN) have been applied with success to forecast level...
In recent decades, artificial neural networks (ANNs) have been used for the prediction of concentrat...
This paper presents the application of feed-forward multilayer perceptron networks to forecast hourl...
Urban air pollution is a growing problem in developing countries. Some compounds especially sulphur ...
AbstractLittle attention is given to applying the artificial neural network (ANN) modeling technique...
Abstract Introduction Due to t...
Air pollution in urban atmosphere directly affects public-health; therefore, it is very essential to...
Prediction of particulate matter (PM) in the air is an important issue in control and reduction of p...
Due to the link between air pollutants and human health, reliable model estimates of hourly pollutan...
The modelling of urban air quality prediction is a difficult task because: i) the processes are cont...
An Artificial Neural Networks (ANNs) model is constructed to forecast SO 2 concentrations in Izmir a...
Poor urban air quality due to high concentrations of particulate matter (PM) remains a major public ...
674-679In this paper, lower tropospheric ozone concentration was modeled using artificial neural net...
Artificial neural networks are functional alternative techniques in modelling the intricate vehicula...
In this paper, the results obtained by inter-comparing several statistical techniques for modelling ...
Procedures based on artificial neural network (ANN) have been applied with success to forecast level...
In recent decades, artificial neural networks (ANNs) have been used for the prediction of concentrat...
This paper presents the application of feed-forward multilayer perceptron networks to forecast hourl...
Urban air pollution is a growing problem in developing countries. Some compounds especially sulphur ...
AbstractLittle attention is given to applying the artificial neural network (ANN) modeling technique...
Abstract Introduction Due to t...
Air pollution in urban atmosphere directly affects public-health; therefore, it is very essential to...
Prediction of particulate matter (PM) in the air is an important issue in control and reduction of p...
Due to the link between air pollutants and human health, reliable model estimates of hourly pollutan...
The modelling of urban air quality prediction is a difficult task because: i) the processes are cont...
An Artificial Neural Networks (ANNs) model is constructed to forecast SO 2 concentrations in Izmir a...
Poor urban air quality due to high concentrations of particulate matter (PM) remains a major public ...
674-679In this paper, lower tropospheric ozone concentration was modeled using artificial neural net...
Artificial neural networks are functional alternative techniques in modelling the intricate vehicula...
In this paper, the results obtained by inter-comparing several statistical techniques for modelling ...
Procedures based on artificial neural network (ANN) have been applied with success to forecast level...